应用Pytesseract-OCR集中监测机械呼吸机的自适应实时数据采集装置

Rowel S. Facunla, John J. Martinez
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引用次数: 0

摘要

来自菲律宾不同医院的呼吸治疗师目前正在对患有呼吸疾病的患者进行逐室访问,以监测机械呼吸机的数据。然而,这使他们暴露于各种呼吸道疾病,并使他们面临感染的风险。利用物联网来设计远程监测系统是必要的,以实施解决方案,减少呼吸治疗师和医护人员的暴露,防止各种呼吸系统疾病的进一步传播。虽然可以设计和更换具有内置远程监测功能的呼吸机,但购买具有此类功能的新设备可能成本高昂。本研究提出设计一种可以连接到旧型号通风机上的装置,使其能够在集中监测站远程查看。本研究利用开源光学字符识别工具(Pytesseract-OCR)的优势,不传输需要大量数据的图像,设备只传输重要信息的文本数据。对捕获的图像进行预处理和扭曲,以提高Pytesseract-OCR字符识别的置信度。该设备能够识别来自呼吸机监视器的文本,置信度为58.6%至94.3%,平均为81.568%。该小组还能够将捕获的数据显示到中央监测站。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Real-Time Data Collection Device to Centralize Mechanical Ventilator Monitoring using Pytesseract-OCR
Abstract Respiratory therapists from different hospitals in the Philippines are currently performing room-to-room visitation to patients with respiratory conditions to monitor the data from mechanical ventilator machines. However, this exposes them to various respiratory diseases and puts them at risk of infection. Utilizing Internet-of-Things is imperative to design a remote monitoring system in implementing a solution to lessen the exposure of respiratory therapists and healthcare workers and prevent the possible further spreading of various respiratory diseases. While ventilators can be designed and replaced with built-in telemonitoring capability, acquiring new equipment with such functionality can be costly. This study proposes to design a device that can be attached to old model ventilators to make them able to be remotely viewable in a centralized monitoring station. This study takes advantage of using an open-source optical character recognition tool (Pytesseract-OCR) so that instead of transferring images that require a lot of data, the device will only transfer text data of vital information. The images captured are pre-processed and warped to increase the confidence level of character recognition of Pytesseract-OCR. The device was able to recognize text from ventilator monitors with confidence level of 58.6% to 94.3% with an average of 81.568%. The team were also able to display the captured data to a centralized monitoring station.
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